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Title of Role
Machine Learning Operations Engineer
Location
Phoenix, AZ (On-site)
Company Stage of Funding
Early-Stage, Venture-Backed
Office Type
On-site, Full-Time
Salary
Competitive + Equity
Company Description
We're representing a defense technology company building next-generation autonomous swarm systems for unmanned ground vehicles (UGVs). The company is applying cutting-edge machine learning and edge AI to deliver low-cost coordinated robotic fleets capable of executing complex missions across multiple domains. The leadership team brings decades of experience in self-driving vehicles, aerospace, and defense, and the company is rapidly scaling its engineering team in Phoenix, AZ to meet growing demand.
What You Will Do
As a Machine Learning Operations Engineer , you'll design, build, and maintain the ML infrastructure that powers perception and autonomy across vehicle swarms. You will :
Design and implement end-to-end ML pipelines for training, validation, and deployment of perception models.
Build robust data management systems for large-scale sensor data (cameras, LiDAR, IMU) from field operations.
Implement model monitoring, A / B testing, and performance tracking systems for deployed models.
Develop CI / CD pipelines for model versioning, testing, and deployment to fleets of autonomous UGVs.
Create distributed computing solutions for large-scale data processing and model training .
Build internal tools for data annotation, evaluation, and performance visualization .
Collaborate with perception engineers, robotics teams, and field ops to ensure seamless deployment.
Ideal Background
2+ years of industry experience in MLOps, DevOps, or ML infrastructure .
Bachelor's degree in computer science, engineering, or related field.
Strong experience with ML pipeline orchestration tools (e.g., Kubeflow, MLflow ).
Proficiency with Docker, Kubernetes , and cloud platforms (AWS, GCP, or Azure).
Strong Python programming and Linux system administration skills.
Experience with model serving frameworks ( TensorRT, ONNX Runtime, TorchServe ).
Familiarity with data versioning and experiment tracking tools (e.g., Weights & Biases, Neptune ).
Experience with monitoring and logging systems ( Prometheus, Grafana, ELK stack ).
Strong organizational and communication skills; thrives in a fast-paced startup environment .
Eligible to work on export-controlled projects and willing to relocate to Phoenix, AZ .
Compensation and Benefits
Salary : Competitive (commensurate with experience)
Equity : Meaningful early-stage ownership stake
Work Setup : On-site in Phoenix, AZ (relocation assistance available)
Other Benefits
Direct ownership of core ML infrastructure powering real-world autonomy
Opportunity to work across defense, robotics, and swarm AI systems
Mission-driven, collaborative environment with leadership experienced in frontier robotics
This role is ideal for engineers passionate about scaling ML infrastructure, deploying cutting-edge models in the field, and building the backbone for autonomous swarm robotics in a fast-moving defense technology company.
Salary Range
$160,000-$200,000 base.
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Machine Learning Engineer • Phoenix, AZ, US